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Predict values with regression
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Predict values with Linear Regression
Predict values with regression
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Predict values with regression
mebaumb ΡΠ΅Π΄Π°ΠΊΡΠΈΡΠΎΠ²Π°Π»(Π°) ΡΡΡ ΡΡΡΠ°Π½ΠΈΡΡ 2021-05-07 13:23:23 -07:00
Π‘ΠΎΠ΄Π΅ΡΠΆΠ°Π½ΠΈΠ΅
Event Information
Category | Details |
---|---|
Workshop Active? | No |
Reactor Topic | Data Science and Machine Learning |
Location | In person / virtual |
Workshop Level | Beginner |
Workshop Duration | 1 hours |
Title | Predict values with regression |
Description | The essence of linear regression is arguably the simplest form of ML: drawing a line through points. You might have done a simple form of this in your high school physics class: plot the results of a series of experiments on graph paper and then draw a line through as many points as possible (and include as many points below the line as above the line where the points don't fall on the line). That is a very form of linear regression. We will build on that conceptual foundation to address more complex situations, such as having points in more than two dimensions or even points whose relationship seems non-linear. |
Content Link | Unknown |
Event Dates Run:
Here's an overview of what this workshop will cover and suggested agenda to follow with links and resources.
Workshop Agenda
Resources
- TBD